About me


I am an analyst at Statistics Canada, working with the Longitudinal and International Study of Adults (LISA) survey. I spent 2020 on a year rotation at Statistics Canada's Data Science Division, where I completed large data science projects for clients such as Health Canada and the Public Health Agency of Canada (PHAC). My research focus is not concrete as my projects have ranged in topics including natural language processing and reinforcement learning. I am enthusiastic and passionate about data science and am credited with starting the first Kaggle Competitive Group at Statistics Canada.

I completed my B.Econ with a minor in Statistics at Carleton University. My undergraduate thesis, The Impact of Substance Abuse in Tennessee: The Relationship between Low Birth Weight and Substance Use During Pregnancy, was advised by Michel Demers. It examines the percentage of low birth weights as a result of neonatal abstinence syndrome (NAS). The aim was to further understand how the opioid crisis has affected pregnancies. I am currently exploring Graduate studies for Computer Science.

At LISA, I often pitch how data science and automation can improve the survey processes and have successfully implemented data science tools into the LISA pipeline. These include anomaly detection, North American Industry Classification System (NAICS) code classification, and IBM-WATSON ICD-10 code classification.

Research Highlights

Quick links and catchy taglines

Learning COVID-19 Mitigation Strategies using Reinforcement Learning

Mathematics of Public Health (Accepted)

Book chapter that explores the use of Reinforcement Learning for learning and analyzing pandemic mitigation strategies... my favorite piece of work!

Association between Food Insecurity and Stressful Life Events among Canadian Adults

Longitudinal and International Study of Adults Research Paper Series

A socioeconmic study that investigates the extent to which stressful life events may increase the likelihood of food insecurity among the Canadian adult population.

Personal and Academic Projects

Current and past projects

Auto Trader

Scrape and execute trade ideas all through Python.



Heart Disease Prediction

Compared different supervised and unsupervised learning algorithms to determine which was best at predicting heart disease.



STEGANALYSIS

A detailed report exploring Steganalysis algorithms, technical discussions, and Steganalysis applications.

Want more?

Hit me up at any of the links below.

Here is a copy of my CV.